PREDICT_LINEAR_REG
Applies a linear regression model on an input relation and returns the predicted value as a FLOAT.
Applies a linear regression model on an input relation and returns the predicted value as a FLOAT.
Syntax
PREDICT_LINEAR_REG ( input-columns
USING PARAMETERS model_name = 'model-name' [, match_by_pos = match-by-position] )
Arguments
input-columns
- Comma-separated list of columns to use from the input relation, or asterisk (*) to select all columns.
Parameters
model_name
Name of the model (case-insensitive).
match_by_pos
Boolean value that specifies how input columns are matched to model features:
-
false
(default): Match by name. -
true
: Match by the position of columns in the input columns list.
-
Examples
=> SELECT PREDICT_LINEAR_REG(waiting USING PARAMETERS model_name='myLinearRegModel')FROM
faithful ORDER BY id;
PREDICT_LINEAR_REG
--------------------
4.15403481386324
2.18505296804024
3.76023844469864
2.8151271587036
4.62659045686076
2.26381224187316
4.86286827835952
4.62659045686076
1.94877514654148
4.62659045686076
2.18505296804024
...
(272 rows)
The following example shows how to use the PREDICT_LINEAR_REG function on an input table, using the match_by_pos
parameter. Note that you can replace the column argument with a constant that does not match an input column:
=> SELECT PREDICT_LINEAR_REG(55 USING PARAMETERS model_name='linear_reg_faithful',
match_by_pos='true')FROM faithful ORDER BY id;
PREDICT_LINEAR_REG
--------------------
2.28552115094171
2.28552115094171
2.28552115094171
2.28552115094171
2.28552115094171
2.28552115094171
2.28552115094171
...
(272 rows)